---
title: Custom instrumentation
sidebarTitle: Custom instrumentation
---

<Note>
If you've decided you no longer want to trace your runs, you can remove the `LANGSMITH_TRACING` environment variable. Note that this does not affect the `RunTree` objects or API users, as these are meant to be low-level and not affected by the tracing toggle.
</Note>

There are several ways to log traces to LangSmith.

<Check>
If you are using LangChain (either Python or JS/TS), you can skip this section and go directly to the [LangChain-specific instructions](/langsmith/trace-with-langchain).
</Check>

## Use `@traceable` / `traceable`

LangSmith makes it easy to log traces with minimal changes to your existing code with the `@traceable` decorator in Python and `traceable` function in TypeScript.

<Note>
The `LANGSMITH_TRACING` environment variable must be set to `'true'` in order for traces to be logged to LangSmith, even when using `@traceable` or `traceable`. This allows you to toggle tracing on and off without changing your code.

Additionally, you will need to set the `LANGSMITH_API_KEY` environment variable to your API key (see [Setup](/) for more information).

By default, the traces will be logged to a project named `default`. To log traces to a different project, see [this section](/langsmith/log-traces-to-project).
</Note>


The `@traceable` decorator is a simple way to log traces from the LangSmith Python SDK. Simply decorate any function with `@traceable`.

Note that when wrapping a sync function with `traceable`, (e.g. `formatPrompt` in the example below), you should use the `await` keyword when calling it to
  ensure the trace is logged correctly.

<CodeGroup>

```python Python
from langsmith import traceable
from openai import Client

openai = Client()

@traceable
def format_prompt(subject):
  return [
      {
          "role": "system",
          "content": "You are a helpful assistant.",
      },
      {
          "role": "user",
          "content": f"What's a good name for a store that sells {subject}?"
      }
  ]

@traceable(run_type="llm")
def invoke_llm(messages):
  return openai.chat.completions.create(
      messages=messages, model="gpt-4o-mini", temperature=0
  )

@traceable
def parse_output(response):
  return response.choices[0].message.content

@traceable
def run_pipeline():
  messages = format_prompt("colorful socks")
  response = invoke_llm(messages)
  return parse_output(response)

run_pipeline()
```

```typescript TypeScript
import { traceable } from "langsmith/traceable";
import OpenAI from "openai";

const openai = new OpenAI();

const formatPrompt = traceable((subject: string) => {
  return [
    {
      role: "system" as const,
      content: "You are a helpful assistant.",
    },
    {
      role: "user" as const,
      content: `What's a good name for a store that sells ${subject}?`,
    },
  ];
},{ name: "formatPrompt" });

const invokeLLM = traceable(
  async ({ messages }: { messages: { role: string; content: string }[] }) => {
      return openai.chat.completions.create({
          model: "gpt-4o-mini",
          messages: messages,
          temperature: 0,
      });
  },
  { run_type: "llm", name: "invokeLLM" }
);

const parseOutput = traceable(
  (response: any) => {
      return response.choices[0].message.content;
  },
  { name: "parseOutput" }
);

const runPipeline = traceable(
  async () => {
      const messages = await formatPrompt("colorful socks");
      const response = await invokeLLM({ messages });
      return parseOutput(response);
  },
  { name: "runPipeline" }
);

await runPipeline();
```

</CodeGroup>

![](/langsmith/images/annotate-code-trace.gif)

## Use the `trace` context manager (Python only)

In Python, you can use the `trace` context manager to log traces to LangSmith. This is useful in situations where:

1. You want to log traces for a specific block of code.
2. You want control over the inputs, outputs, and other attributes of the trace.
3. It is not feasible to use a decorator or wrapper.
4. Any or all of the above.

The context manager integrates seamlessly with the `traceable` decorator and `wrap_openai` wrapper, so you can use them together in the same application.

```python
import openai
import langsmith as ls
from langsmith.wrappers import wrap_openai

client = wrap_openai(openai.Client())

@ls.traceable(run_type="tool", name="Retrieve Context")
def my_tool(question: str) -> str:
    return "During this morning's meeting, we solved all world conflict."

def chat_pipeline(question: str):
    context = my_tool(question)
    messages = [
        { "role": "system", "content": "You are a helpful assistant. Please respond to the user's request only based on the given context." },
        { "role": "user", "content": f"Question: {question}\nContext: {context}"}
    ]
    chat_completion = client.chat.completions.create(
        model="gpt-4o-mini", messages=messages
    )
    return chat_completion.choices[0].message.content

app_inputs = {"input": "Can you summarize this morning's meetings?"}

with ls.trace("Chat Pipeline", "chain", project_name="my_test", inputs=app_inputs) as rt:
    output = chat_pipeline("Can you summarize this morning's meetings?")
    rt.end(outputs={"output": output})
```

## Use the `RunTree` API

Another, more explicit way to log traces to LangSmith is via the `RunTree` API. This API allows you more control over your tracing - you can manually create runs and children runs to assemble your trace. You still need to set your `LANGSMITH_API_KEY`, but `LANGSMITH_TRACING` is not necessary for this method.

This method is not recommended, as it's easier to make mistakes in propagating trace context.

<CodeGroup>

```python Python
import openai
from langsmith.run_trees import RunTree

# This can be a user input to your app
question = "Can you summarize this morning's meetings?"

# Create a top-level run
pipeline = RunTree(
  name="Chat Pipeline",
  run_type="chain",
  inputs={"question": question}
)
pipeline.post()

# This can be retrieved in a retrieval step
context = "During this morning's meeting, we solved all world conflict."
messages = [
  { "role": "system", "content": "You are a helpful assistant. Please respond to the user's request only based on the given context." },
  { "role": "user", "content": f"Question: {question}\nContext: {context}"}
]

# Create a child run
child_llm_run = pipeline.create_child(
  name="OpenAI Call",
  run_type="llm",
  inputs={"messages": messages},
)
child_llm_run.post()

# Generate a completion
client = openai.Client()
chat_completion = client.chat.completions.create(
  model="gpt-4o-mini", messages=messages
)

# End the runs and log them
child_llm_run.end(outputs=chat_completion)
child_llm_run.patch()
pipeline.end(outputs={"answer": chat_completion.choices[0].message.content})
pipeline.patch()
```

```typescript TypeScript
import OpenAI from "openai";
import { RunTree } from "langsmith";

// This can be a user input to your app
const question = "Can you summarize this morning's meetings?";

const pipeline = new RunTree({
  name: "Chat Pipeline",
  run_type: "chain",
  inputs: { question }
});
await pipeline.postRun();

// This can be retrieved in a retrieval step
const context = "During this morning's meeting, we solved all world conflict.";
const messages = [
  { role: "system", content: "You are a helpful assistant. Please respond to the user's request only based on the given context." },
  { role: "user", content: `Question: ${question}Context: ${context}` }
];

// Create a child run
const childRun = await pipeline.createChild({
  name: "OpenAI Call",
  run_type: "llm",
  inputs: { messages },
});
await childRun.postRun();

// Generate a completion
const client = new OpenAI();
const chatCompletion = await client.chat.completions.create({
  model: "gpt-4o-mini",
  messages: messages,
});

// End the runs and log them
childRun.end(chatCompletion);
await childRun.patchRun();
pipeline.end({ outputs: { answer: chatCompletion.choices[0].message.content } });
await pipeline.patchRun();
```

</CodeGroup>

## Example usage

You can extend the utilities above to conveniently trace any code. Below are some example extensions:

Trace any public method in a class:

```python
from typing import Any, Callable, Type, TypeVar

T = TypeVar("T")

def traceable_cls(cls: Type[T]) -> Type[T]:
    """Instrument all public methods in a class."""
    def wrap_method(name: str, method: Any) -> Any:
        if callable(method) and not name.startswith("__"):
            return traceable(name=f"{cls.__name__}.{name}")(method)
        return method

    # Handle __dict__ case
    for name in dir(cls):
        if not name.startswith("_"):
            try:
                method = getattr(cls, name)
                setattr(cls, name, wrap_method(name, method))
            except AttributeError:
                # Skip attributes that can't be set (e.g., some descriptors)
                pass

    # Handle __slots__ case
    if hasattr(cls, "__slots__"):
        for slot in cls.__slots__:  # type: ignore[attr-defined]
            if not slot.startswith("__"):
                try:
                    method = getattr(cls, slot)
                    setattr(cls, slot, wrap_method(slot, method))
                except AttributeError:
                    # Skip slots that don't have a value yet
                    pass

    return cls

@traceable_cls
class MyClass:
    def __init__(self, some_val: int):
        self.some_val = some_val

    def combine(self, other_val: int):
        return self.some_val + other_val

# See trace: https://smith.langchain.com/public/882f9ecf-5057-426a-ae98-0edf84fdcaf9/r
MyClass(13).combine(29)
```

## Ensure all traces are submitted before exiting

LangSmith's tracing is done in a background thread to avoid obstructing your production application. This means that your process may end before all traces are successfully posted to LangSmith. Here are some options for ensuring all traces are submitted before exiting your application.

### Using the LangSmith SDK

If you are using the LangSmith SDK standalone, you can use the `flush` method before exit:

<CodeGroup>

```python Python
from langsmith import Client

client = Client()

@traceable(client=client)
async def my_traced_func():
  # Your code here...
  pass

try:
  await my_traced_func()
finally:
  await client.flush()
```

```typescript TypeScript
import { Client } from "langsmith";

const langsmithClient = new Client({});

const myTracedFunc = traceable(async () => {
  // Your code here...
},{ client: langsmithClient });

try {
  await myTracedFunc();
} finally {
  await langsmithClient.flush();
}
```

</CodeGroup>

### Using LangChain

If you are using LangChain, please refer to our [LangChain tracing guide](/langsmith/trace-with-langchain#ensure-all-traces-are-submitted-before-exiting).

If you prefer a video tutorial, check out the [Tracing Basics video](https://academy.langchain.com/pages/intro-to-langsmith-preview) from the Introduction to LangSmith Course.
